SafeSplit: A Novel Defense Against Client-Side Backdoor Attacks in Split Learning (Full Version)
Phillip Rieger, Alessandro Pegoraro, Kavita Kumari, Tigist Abera,, Jonathan Knauer, Ahmad-Reza Sadeghi

TL;DR
SafeSplit is a pioneering defense mechanism designed to detect and mitigate client-side backdoor attacks in Split Learning by employing static and dynamic analysis techniques to ensure model integrity.
Contribution
The paper introduces SafeSplit, the first tailored defense for backdoor attacks in Split Learning, utilizing a novel dual analysis approach for effective detection.
Findings
High effectiveness in detecting backdoor attacks across various scenarios
Preserves model utility while filtering malicious clients
Robust against different data distributions and client counts
Abstract
Split Learning (SL) is a distributed deep learning approach enabling multiple clients and a server to collaboratively train and infer on a shared deep neural network (DNN) without requiring clients to share their private local data. The DNN is partitioned in SL, with most layers residing on the server and a few initial layers and inputs on the client side. This configuration allows resource-constrained clients to participate in training and inference. However, the distributed architecture exposes SL to backdoor attacks, where malicious clients can manipulate local datasets to alter the DNN's behavior. Existing defenses from other distributed frameworks like Federated Learning are not applicable, and there is a lack of effective backdoor defenses specifically designed for SL. We present SafeSplit, the first defense against client-side backdoor attacks in Split Learning (SL). SafeSplit…
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